


Beijing will promote the construction of high-level autonomous driving demonstration zones this year towards the 4.0 stage ladder task
At the second session of the 16th Beijing Municipal People’s Congress, Beijing Mayor Yin Yong emphasized in his government work report that digital industrialization will be promoted as a whole this year. This initiative aims to promote the innovative development of Beijing's economy and enhance the competitiveness and influence of the digital industry. Beijing will strengthen the development planning of the digital economy, increase support for the digital industry, and provide a better environment and conditions for the development of the digital industry. At the same time, support policies for innovation and entrepreneurship will be strengthened to cultivate
He said that Beijing will intensify efforts to promote the construction of data infrastructure systems, create pilot areas, and at the same time carry out comprehensive reform pilots, including including data assets in the table , Promote cross-border data facilitation services, etc. In addition, it will actively promote the implementation of a series of major projects, including computing power centers, data training bases, national blockchain hub nodes, etc. At the same time, Beijing will also explore and improve data trading specifications and enhance the operational capabilities of the Beijing International Big Data Exchange.
In addition, Beijing will also launch the 4.0 phase of the construction of high-level autonomous driving demonstration zones, and open key application scenarios such as airports, train stations, and urban road cleaning in an orderly manner.
In September 2020, Beijing created the world's first network-connected and cloud-controlled high-level autonomous driving demonstration area. At present, the first batch of unmanned patrol vehicles approved for road testing in China have begun to hit the road in Beijing Economic and Technological Development Zone (Yizhuang).

The report also pointed out that in order to stimulate consumption with potential, Beijing will increase its efforts. In addition to deepening the construction of an international consumption center city, it will also solidly promote the transformation and upgrading of traditional business districts, and plan to build four international consumption experience zones including Sanlitun. In addition, it will also promote consumption from post-epidemic recovery to continued expansion, boosting bulk consumption such as new energy vehicles and electronic products. At the same time, we will also promote equipment updates and the replacement of old consumer goods with new ones, cultivate and expand new types of consumption, and vigorously develop digital consumption, green consumption and healthy consumption.
In other aspects, Beijing will also speed up the construction of "new two wings". Implement a new round of strategic cooperation agreement between Beijing and Xiongan, promote the integration of government services in the city, deepen the "three schools and one hospital" cooperation in running schools and medical services, and jointly build the Zhongguancun Science and Technology Park in Xiongan New Area. Accelerate the pace of high-quality development of the city's sub-center, continue to maintain an investment intensity of 100 billion, start the construction of the East Sixth Ring Road High Line Park, achieve the basic completion of the main project of the comprehensive transportation hub of the sub-center station, and have the conditions for the East Sixth Ring Road inland reconstruction project to be opened to traffic, and implement For major projects such as Rail Transit Line 101 and Line 22, the factory access road has been completed and opened to traffic. Plan to promote the second phase of the Universal Theme Park, accelerate the construction of Chaobai River National Forest Park, and promote greater breakthroughs in the construction of the "Two Demonstration Zones". At the same time, we will strengthen the co-construction and sharing of public services. Consolidate and improve the "Beijing-Tianjin-Hebei on Track", build the first phase of the intercity railway connection line, and realize the high-speed opening of the new line of National Highway 109.
The above is the detailed content of Beijing will promote the construction of high-level autonomous driving demonstration zones this year towards the 4.0 stage ladder task. For more information, please follow other related articles on the PHP Chinese website!

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